scholarly journals Big data in multi-block data analysis: An approach to parallelizing Partial Least Squares Mode B algorithm

Heliyon ◽  
2019 ◽  
Vol 5 (4) ◽  
pp. e01451
Author(s):  
Alba Martinez-Ruiz ◽  
Cristina Montañola-Sales
2020 ◽  
Vol 1099 ◽  
pp. 26-38 ◽  
Author(s):  
Yoric Gagnebin ◽  
Julian Pezzatti ◽  
Pierre Lescuyer ◽  
Julien Boccard ◽  
Belen Ponte ◽  
...  

2017 ◽  
Vol 100 (2) ◽  
pp. 503-509 ◽  
Author(s):  
Cen Xiong ◽  
Zhiyi Su ◽  
Yanjie Zhezng ◽  
Qi Wang ◽  
Yejing Ling ◽  
...  

Abstract The pyrolysis (Py)-GC-MS technique was first introduced for the identification of two kinds of Chinese geographical indication vinegars because its advantages are that it is a simple and convenient sample pretreatmentand inlet method. Abundant Py information about vinegars was obtained using Py-GC-MS; 21 common peaks were selected. With the help of the classical partial least-squares (PLS) modeling method for data analysis, two identification models for Shanxi extra-aged (SX) and Zhenjiang (ZJ) vinegars were established, respectively. An N-reducing method was used to select the variables. The variables were reduced one at a time to build the PLS models with the lowest number of misjudgments. Both models had good recognition rates, identifying over 90% of samples correctly. Thus, combining Py-GC-MS and PLS could be regarded as an effective method for the identification of SX and ZJ vinegars.


2019 ◽  
Vol 20 (2) ◽  
pp. 36
Author(s):  
Ida Giyanti ◽  
Erna Indriastiningsih

This study aims to predict the impact of the understanding of halal certification by Small Medium Enterprise (SME) entrepreneurs on the intention to conduct halal certification. This study was conducted in the Cooperative and SME Office of Surakarta City. The Halal Certification Comprehension Rate was assessed using three variables.   We had knowledge of halal (PGT), perceived halal certification advantages (MNF), and perceived halal certification procedures (PROS).  Structural Equation Model-Partial Least Squares (SEM-PLS) was used for data analysis.  The results show that SMEs have a good knowledge of halal and agree that halal certification is beneficial to their businesses.  We found, though, that the processes for handling Halal Certification are relatively complex. Based on the study, the perception of Halal Certification Benefits (MNF) is significantly affected by the intention of SMEs to conduct Halal Certification (NHL). The other two results show a positive correlation. However, they are not statistically significant.This study aims to predict the impact of the understanding of halal certification by Small Medium Enterprise (SME) entrepreneurs on the intention to conduct halal certification. This study was conducted in the Cooperative and SME Office of Surakarta City. The Halal Certification Comprehension Rate was assessed using three variables.   We had knowledge of halal (PGT), perceived halal certification advantages (MNF), and perceived halal certification procedures (PROS).  Structural Equation Model-Partial Least Squares (SEM-PLS) was used for data analysis.  The results show that SMEs have a good knowledge of halal and agree that halal certification is beneficial to their businesses.  We found, though, that the processes for handling Halal Certification are relatively complex. Based on the study, the perception of Halal Certification Benefits (MNF) is significantly affected by the intention of SMEs to conduct Halal Certification (NHL). The other two results show a positive correlation, but they are not statistically significant.


2021 ◽  
Vol 5 (1) ◽  
pp. i-xiv
Author(s):  
Mumtaz Ali Memon ◽  
T. Ramayah ◽  
Jun-Hwa Cheah ◽  
Hiram Ting ◽  
Francis Chuah ◽  
...  

Partial least squares structural equation modeling (PLS-SEM) is one of the most widely used methods of multivariate data analysis. Although previous research has discussed different aspects of PLS-SEM, little is done to explain the attributes of the different PLS-SEM statistical applications. The objective of this editorial is to discuss a variety of PLS-SEM applications, including SmartPLS, WarpPLS, and ADANCO. It is written based on information received from the developers via emails as well as our ongoing understanding and experience of using these applications. We hope this editorial can serve as a manual for users to understand the unique characteristics of each PLS-SEM application and make an informed decision on the most appropriate application in their research.


2021 ◽  
Vol 4 ◽  
Author(s):  
Frédéric Bertrand ◽  
Myriam Maumy-Bertrand

Fitting Cox models in a big data context -on a massive scale in terms of volume, intensity, and complexity exceeding the capacity of usual analytic tools-is often challenging. If some data are missing, it is even more difficult. We proposed algorithms that were able to fit Cox models in high dimensional settings using extensions of partial least squares regression to the Cox models. Some of them were able to cope with missing data. We were recently able to extend our most recent algorithms to big data, thus allowing to fit Cox model for big data with missing values. When cross-validating standard or extended Cox models, the commonly used criterion is the cross-validated partial loglikelihood using a naive or a van Houwelingen scheme —to make efficient use of the death times of the left out data in relation to the death times of all the data. Quite astonishingly, we will show, using a strong simulation study involving three different data simulation algorithms, that these two cross-validation methods fail with the extensions, either straightforward or more involved ones, of partial least squares regression to the Cox model. This is quite an interesting result for at least two reasons. Firstly, several nice features of PLS based models, including regularization, interpretability of the components, missing data support, data visualization thanks to biplots of individuals and variables —and even parsimony or group parsimony for Sparse partial least squares or sparse group SPLS based models, account for a common use of these extensions by statisticians who usually select their hyperparameters using cross-validation. Secondly, they are almost always featured in benchmarking studies to assess the performance of a new estimation technique used in a high dimensional or big data context and often show poor statistical properties. We carried out a vast simulation study to evaluate more than a dozen of potential cross-validation criteria, either AUC or prediction error based. Several of them lead to the selection of a reasonable number of components. Using these newly found cross-validation criteria to fit extensions of partial least squares regression to the Cox model, we performed a benchmark reanalysis that showed enhanced performances of these techniques. In addition, we proposed sparse group extensions of our algorithms and defined a new robust measure based on the Schmid score and the R coefficient of determination for least absolute deviation: the integrated R Schmid Score weighted. The R-package used in this article is available on the CRAN, http://cran.r-project.org/web/packages/plsRcox/index.html. The R package bigPLS will soon be available on the CRAN and, until then, is available on Github https://github.com/fbertran/bigPLS.


NeuroImage ◽  
2016 ◽  
Vol 124 ◽  
pp. 181-193 ◽  
Author(s):  
Michael J. Cheung ◽  
Natasa Kovačević ◽  
Zainab Fatima ◽  
Bratislav Mišić ◽  
Anthony R. McIntosh

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